Statistical and Adaptive Signal Processing Spectral Estimation, Signal Modeling, Adaptive Filtering and Array Processing
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Description: Featuring over 3000 equations and more than 300 illustrations, this authoritative volume offers a unified, comprehensive and practical treatment of spectral estimation, signal modelling, adaptive filtering, and array processing.
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All the information you need in one place! Each Study Brief is a summary of one specific subject; facts, figures, and explanations to help you learn faster.
List price: $149.00
Copyright year: 2005
Publisher: Artech House, Incorporated
Size: 8.25" wide x 10.25" long x 2.00" tall
|Fundamentals of Discrete-Time Signal Processing|
|Random Variables, Vectors, and Sequences|
|Linear Signal Models|
|Nonparametric Power Spectrum Estimation|
|Optimum Linear Filters|
|Algorithms and Structures for Optimum Linear Filters|
|Least-Squares Filtering and Prediction|
|Signal Modeling and Parametric Spectral Estimation|
|Matrix Inversion Lemma|
|Gradients and Optimization in Complex Space|
|Useful Results from Matrix Algebra|
|Minimum Phase Test for Polynomials|